TY - JOUR
T1 - Emulating microstructural evolution during spinodal decomposition using a tensor decomposed convolutional and recurrent neural network
AU - Wu, Peichen
AU - Iquebal, Ashif Sikandar
AU - Ankit, Kumar
N1 - Funding Information:
KA acknowledges funding from the National Science Foundation (NSF) under Grant Nos. CMMI-1763128 (Drs. Alexis Lewis and Thomas Kuech, Program Managers) and CAREER-2145812 (Dr. Jonathan Madison, Program Manager).
Publisher Copyright:
© 2023 Elsevier B.V.
PY - 2023/5
Y1 - 2023/5
N2 - Phase-field (PF) models are one of the most powerful tools to simulate microstructural evolution in metallic materials, polymers, and ceramics. However, existing PF approaches rely on rigorous mathematical model development, sophisticated numerical schemes, and high-performance computing for accuracy. Although recently developed surrogate microstructure models employ deep-learning techniques and reconstruction of microstructures from lower-dimensional data, their accuracy is fairly limited as spatiotemporal information is lost in the pursuit of dimensional reduction. Given these limitations, we present a novel data-driven emulator (DDE) for predicting microstructural evolution, which combines an image-based convolutional and recurrent neural network (CRNN) with tensor decomposition, while leveraging previously obtained PF datasets for training. To assess the robustness of DDE, we also compare the emulation sequence and the scaling behavior with phase-field simulations for several noisy initial states. Finally, we discuss the effectiveness of our microstructure emulation technique in the context of runtime speed-up while also highlighting its trade-off with accuracy.
AB - Phase-field (PF) models are one of the most powerful tools to simulate microstructural evolution in metallic materials, polymers, and ceramics. However, existing PF approaches rely on rigorous mathematical model development, sophisticated numerical schemes, and high-performance computing for accuracy. Although recently developed surrogate microstructure models employ deep-learning techniques and reconstruction of microstructures from lower-dimensional data, their accuracy is fairly limited as spatiotemporal information is lost in the pursuit of dimensional reduction. Given these limitations, we present a novel data-driven emulator (DDE) for predicting microstructural evolution, which combines an image-based convolutional and recurrent neural network (CRNN) with tensor decomposition, while leveraging previously obtained PF datasets for training. To assess the robustness of DDE, we also compare the emulation sequence and the scaling behavior with phase-field simulations for several noisy initial states. Finally, we discuss the effectiveness of our microstructure emulation technique in the context of runtime speed-up while also highlighting its trade-off with accuracy.
KW - Convolutional and recurrent neural network
KW - Microstructure evolution
KW - Phase-field
KW - Tensor decomposition
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U2 - 10.1016/j.commatsci.2023.112187
DO - 10.1016/j.commatsci.2023.112187
M3 - Article
AN - SCOPUS:85152594414
SN - 0927-0256
VL - 224
JO - Computational Materials Science
JF - Computational Materials Science
M1 - 112187
ER -